| Literature DB >> 25431219 |
Rochelle E Tractenberg1, Andrew J Russell2, Gregory J Morgan2, Kevin T FitzGerald3, Jeff Collmann4, Lee Vinsel2, Michael Steinmann2, Lisa M Dolling2.
Abstract
The use of Big Data--however the term is defined--involves a wide array of issues and stakeholders, thereby increasing numbers of complex decisions around issues including data acquisition, use, and sharing. Big Data is becoming a significant component of practice in an ever-increasing range of disciplines; however, since it is not a coherent "discipline" itself, specific codes of conduct for Big Data users and researchers do not exist. While many institutions have created, or will create, training opportunities (e.g., degree programs, workshops) to prepare people to work in and around Big Data, insufficient time, space, and thought have been dedicated to training these people to engage with the ethical, legal, and social issues in this new domain. Since Big Data practitioners come from, and work in, diverse contexts, neither a relevant professional code of conduct nor specific formal ethics training are likely to be readily available. This normative paper describes an approach to conceptualizing ethical reasoning and integrating it into training for Big Data use and research. Our approach is based on a published framework that emphasizes ethical reasoning rather than topical knowledge. We describe the formation of professional community norms from two key disciplines that contribute to the emergent field of Big Data: computer science and statistics. Historical analogies from these professions suggest strategies for introducing trainees and orienting practitioners both to ethical reasoning and to a code of professional conduct itself. We include two semester course syllabi to strengthen our thesis that codes of conduct (including and beyond those we describe) can be harnessed to support the development of ethical reasoning in, and a sense of professional identity among, Big Data practitioners.Entities:
Keywords: Big Data; Curriculum; Ethics education; Professionalism; Training
Mesh:
Year: 2014 PMID: 25431219 PMCID: PMC4656703 DOI: 10.1007/s11948-014-9613-1
Source DB: PubMed Journal: Sci Eng Ethics ISSN: 1353-3452 Impact factor: 3.525
Alignment of ethics course goals criteria (NAE 2013) with syllabi mapping MR-ER to codes of conduct
| NAE criterion | ACM code/semester course syllabus | ASA code/semester course syllabus |
|---|---|---|
| 1. Goal should represent something important/relevant to the ethical or responsible conduct of research or practice | Ensures that at least one code of professional conduct will be introduced and discussed. Ensures that the main domains of the code of conduct will be developed up to a specific target level | |
| 2. Goal should identify and address some concrete deficiency | There is no current (2014) integration of either code of conduct (of ACM or ASA) in any program of study; ethical reasoning is generally not taught to quantitative scientists | |
| 3. Achievement of the goal should be independent of other (possibly related) goals | The course described in the syllabus does meet the “RCR training requirement”, but it also fulfills two useful functions (introducing a code of conduct and orienting students towards ethical reflection) | Requiring students to achieve the target level of performance does not require specific courses to be offered (so using this matrix cannot support a “compliance” approach to “RCR training”) |
| 4. Goal should be actually and observably amenable to an active intervention | Syllabus describes levels of participation in detail—all are observable and assessable- by the instructor and by the students themselves | |
| 5. Achievement of the goal should be documented/documentable with either quantitative or qualitative <as appropriate> outcomes | Final assignment represents the students’ self assessment and utilizes their semester’s worth of written work to justify their assessment (equally true for faculty assessment of each student) | |
| 6. Achievement of the goal should result in a change that is detectible and meaningful | Students who participate in a course structured like this one will demonstrate skills (ethical reasoning) and knowledge (professional conduct) that are currently not observed; the change will be meaningful; engagement with ethics training for Big Data practitioners would be a complete change that would be meaningful | |
| 7. Goal should be feasible | The course syllabus is complete—offering or adapting this course is feasible | |
Course objectives and topics
| Session topics | Objectives |
|---|---|
|
| Describe the course purposes and structure, and the case study method for teaching; introduce the Mastery Rubric and understand the structure of each week’s meetings, writings, and assessment. |
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| Discuss the utility of the prerequisite knowledge and how/whether augmenting this with formal ethical reasoning steps can serve as a basis for adequate reasoning and case study discussions. |
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| Identify and articulate obligations to protect fundamental human rights and respect diversity in all cultures. Describe “socially-responsible use” of the efforts of Big Data scientists (and of Big Data itself). Discuss how training supports (or fail to support) the recognition of ethical or moral dilemmas (KSA 1). |
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| Discuss decision-making frameworks (KSA 2) such as utilitarianism and social justice, and their relationships to cases or situations where which Big Data does, can, or could harm others. Explore how using such frameworks can (or cannot) support the avoidance of harm to others, or even the delineation of what is to be considered a harm by the various stakeholders in a given situation. |
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| Discuss how identification and evaluation of alternative actions (KSA 3) with respect to choosing and deciding on courses of action. |
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| Discuss decision-making and the justifications for the identification, management and/or removal of conflicts of interest or responsibility. |
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| Reflect on decision-making in ethical dilemmas and how this supports, or fails to support, mentorship. |
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| Using the ethical reasoning KSAs as a decision-making framework to work through case studies on intellectual property issues. |
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| Using the ethical reasoning KSAs as a decision-making framework to work through case studies on privacy and how Big Data can and can’t respect personal privacy. Consider ownership of the actual data in any Big Data application. |
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| Using the decision-making framework in the MR-RCR to discuss confidentiality within and outside of work teams; consider how confidentiality and privacy interact/intersect in Big Data applications, and how confidentiality and intellectual property interact/intersect generally. |
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| Discuss the interaction of personal values, professional requirements, and social good in applications or development relating to Big Data. |
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| Discuss decision-making for authorship and publication, and for your peer review of others (and the overall decision to obtain peer review) and the justifications for such decisions. |
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| Explore the “stewardship” model of the scientist with respect to scientific disciplines, societies of scientists, and society at large. Reflect on decision-making in ethical dilemmas and how this supports, or fails to support, stewardship. |
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| Discussion of the course, the ethical reasoning KSAs and their development, and the sense that students have of what they have learned and whether/how they might continue to learn. Discuss other ethics training paradigms and opportunities |
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